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首页> 外文期刊>IEEE transactions on systems, man and cybernetics. Part C, Applications and reviews >Mining Mobile Sequential Patterns in a Mobile Commerce Environment
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Mining Mobile Sequential Patterns in a Mobile Commerce Environment

机译:在移动商务环境中挖掘移动顺序模式

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In this paper, we explore a new data mining capability for a mobile commerce environment. To better reflect the customer usage patterns in the mobile commerce environment, we propose an innovative mining model, called mining mobile sequential patterns, which takes both the moving patterns and purchase patterns of customers into consideration. How to strike a compromise among the use of various knowledge to solve the mining on mobile sequential patterns is a challenging issue. We devise three algorithms (algorithm TJLS, algorithm TJPT, and algorithm TJPF) for determining the frequent sequential patterns, which are termed large sequential patterns in this paper, from the mobile transaction sequences. Algorithm TJLS is devised in light of the concept of association rules and is used as the basic scheme. Algorithm TJPT is devised by taking both the concepts of association rules and path traversal patterns into consideration and gains performance improvement by path trimming. Algorithm TJPF is devised by utilizing the pattern family technique which is developed to exploit the relationship between moving and purchase behaviors, and thus is able to generate the large sequential patterns very efficiently. A simulation model for the mobile commerce environment is developed, and a synthetic workload is generated for performance studies. In mining mobile sequential patterns, it is shown by our experimental results that algorithm TJPF significantly outperforms others in both execution efficiency and memory saving, indicating the usefulness of the pattern family technique devised in this paper. It is shown by our results that by taking both moving and purchase patterns into consideration, one can have a better model for a mobile commerce system and is thus able to exploit the intrinsic relationship between these two important factors for the efficient mining of mobile sequential patterns
机译:在本文中,我们探索了一种用于移动商务环境的新数据挖掘功能。为了更好地反映移动商务环境中的客户使用模式,我们提出了一种创新的挖掘模型,称为挖掘移动顺序模式,该模型同时考虑了客户的移动模式和购买模式。如何在使用各种知识来解决移动顺序模式的挖掘之间取得折衷是一个具有挑战性的问题。我们设计了三种算法(算法TJLS,算法TJPT和算法TJPF)来从移动事务序列中确定频繁的顺序模式,在本文中称为大顺序模式。算法TJLS是根据关联规则的概念设计的,并用作基本方案。通过考虑关联规则和路径遍历模式的概念来设计算法TJPT,并通过路径修整来提高性能。算法TJPF是利用模式家族技术设计的,该技术被开发来利用移动行为和购买行为之间的关系,因此能够非常有效地生成大型顺序模式。开发了用于移动商务环境的仿真模型,并生成了用于性能研究的综合工作负载。在挖掘移动顺序模式中,我们的实验结果表明,算法TJPF在执行效率和内存节省方面均明显优于其他算法,这表明本文设计的模式族技术很有用。我们的结果表明,通过同时考虑移动和购买模式,可以为移动商务系统提供更好的模型,从而能够利用这两个重要因素之间的内在联系来有效挖掘移动顺序模式

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